| Literature DB >> 35585537 |
William James Deardorff1, Bocheng Jing2, Sun Y Jeon2, W John Boscardin2, Alexandra K Lee2, Kathy Z Fung3, Sei J Lee3.
Abstract
BACKGROUND: Electronic health record (EHR) prediction models may be easier to use in busy clinical settings since EHR data can be auto-populated into models. This study assessed whether adding functional status and/or Medicare claims data (which are often not available in EHRs) improves the accuracy of a previously developed Veterans Affairs (VA) EHR-based mortality index.Entities:
Keywords: Functional status; Medicare data; Mortality prediction model; Physical function
Mesh:
Year: 2022 PMID: 35585537 PMCID: PMC9118715 DOI: 10.1186/s12877-022-03126-z
Source DB: PubMed Journal: BMC Geriatr ISSN: 1471-2318 Impact factor: 4.070
Selected baseline characteristics in the development and validation cohorts
| Characteristic | Development cohort ( | Validation cohort ( |
|---|---|---|
| Demographics | ||
| Age in years, mean (SD) | 82.6 (4.8) | 82.5 (4.8) |
| Male | 48,918 (98.6%) | 12,204 (98.4%) |
| Vital Signs | ||
| BMI ≥30 | 9278 (18.7%) | 2332 (18.8%) |
| SBP ≥140 mmHg | 14,877 (30.0%) | 3793 (30.6%) |
| Medications | ||
| Lipid lowering agents | 27,138 (54.7%) | 6797 (54.8%) |
| ACE inhibitors | 12,552 (25.3%) | 3200 (25.8%) |
| Beta blockers | 17,563 (35.4%) | 4304 (34.7%) |
| Oral hypoglycemics | 7343 (14.8%) | 1861 (15.0%) |
| Chronic Conditions | ||
| Hypertension | 37,927 (76.5%) | 9507 (76.7%) |
| Hyperlipidemia | 35,420 (71.4%) | 8872 (71.5%) |
| Diabetes mellitus | 17,736 (35.8%) | 4360 (35.2%) |
| Congestive heart failure | 6046 (12.2%) | 1430 (11.5%) |
| Dementia | 4616 (9.3%) | 1167 (9.4%) |
| VA utilization | ||
| Emergency department visits | ||
| 0 | 43,986 (88.7%) | 10,982 (88.6%) |
| 1 | 3134 (6.3%) | 787 (6.4%) |
| > 1 | 2492 (5.0%) | 633 (5.1%) |
| Hospitalizations | ||
| 0 | 47,174 (95.1%) | 11,758 (94.8%) |
| 1 | 1794 (3.6%) | 473 (3.8%) |
| > 1 | 644 (1.3%) | 171 (1.4%) |
| Functional scores, median (IQR) | ||
| ADL score (range, 0-5) | 0 (0-0) | 0 (0-0) |
| IADL score (range, 0-7) | 0 (0-1) | 0 (0-1) |
| Medicare linkage available | 20,058 (40.4%) | 5045 (40.7%) |
| Medicare utilization | ||
| Emergency department visits | ||
| 0 | 39,643 (79.9%) | 9938 (80.1%) |
| 1 | 5870 (11.8%) | 1504 (12.1%) |
| > 1 | 4099 (8.3%) | 960 (7.7%) |
| Hospitalizations | ||
| 0 | 44,236 (89.2%) | 11,120 (89.7%) |
| 1 | 3749 (7.6%) | 899 (7.2%) |
| > 1 | 1627 (3.3%) | 393 (3.2%) |
| Mortality at follow-up | ||
| Year 1 | 3969 (8.0%) | 993 (8.0%) |
| Year 2 | 8137 (16.4%) | 2021 (16.3%) |
| Year 3 | 12,503 (25.2%) | 3101 (25.0%) |
| Year 4 | 16,720 (33.7%) | 4155 (33.5%) |
| Year 5 | 20,738 (41.8%) | 5185 (41.8%) |
Abbreviations: ACE Angiotensin converting enzyme, ADL Activities of daily living, BMI Body mass index, IADL Instrumental activities of daily living, IQR Interquartile range, SBP Systolic blood pressure, SD Standard deviation, VA Veterans Affairs
Fig. 1Number of predictor variables selected within each of the 100 variable models. Abbreviations: c-statistic, concordance statistic; EHR, electronic health record. * For the base model and base + function model, diagnoses codes were obtained only from Veterans Affairs electronic health record data. For the base + Medicare and base + function + Medicare models, diagnosis codes were obtained from the Veterans Affairs electronic health record and Medicare sources
Concordance statistics for the four models in the development and validation cohorts
| Model | c-statistic (95% CI) | |
|---|---|---|
| Development cohort | Validation cohort | |
| 0.809 (0.805, 0.812) | 0.804 (0.796, 0.812) | |
| 0.814 (0.810, 0.818) | 0.809 (0.801, 0.816) | |
| 0.813 (0.810, 0.817) | 0.811 (0.803, 0.818) | |
| 0.818 (0.814, 0.822) | 0.814 (0.807, 0.822) | |
Abbreviations: c-statistic Concordance statistic
Reclassification table comparing the base model with the base + function + Medicare model
| Reclassification table for individuals who did and did not die on follow-up | ||||
|---|---|---|---|---|
| Individuals who died during the follow-up period | ||||
| < 0.5 | ≥0.5 | Total | ||
| < 0.5 | 6492 | 7598 | ||
| ≥0.5 | 15,650 | 16,688 | ||
| Total | 7530 | 16,756 | 24,286 | |
| NRI for events (death)a | 1106 – 1038 / 24,286 = 0.28% | |||
| Individuals alive at the end of follow-up | < 0.5 | 18,959 | 19,725 | |
| ≥0.5 | 4502 | 5601 | ||
| Total | 20,058 | 5268 | 25,326 | |
| NRI for non-events (survived)b | 1099 – 766 / 25,326 = 1.31% | |||
| Overall net reclassification improvementc | 0.0028 + 0.0131 = 0.0159 | |||
| Integrated discrimination improvement | 0.0176 | |||
A risk threshold of 50% was used to calculate the net reclassification improvement for the base model compared with the base plus functional measures plus Medicare data model (base + function + Medicare model).
Abbreviations: NRI Net reclassification improvement
aThe improvement in classification among individuals who died during follow-up is defined as the number of deaths correctly reclassified as higher risk (in boldface = 1106) minus the number of deaths incorrectly reclassified as lower risk (in italics = 1038) divided by the total number of deaths (24,286). Therefore, the NRI for events was 1106 – 1038 / 24,286 = 0.28%
bThe improvement in classification among individuals who survived during follow-up is defined as the number of non-events correctly reclassified as lower risk (in boldface = 1099) minus the number of non-events incorrectly reclassified as higher risk (in italics = 766) divided by the total number of people who survived (25,326). Therefore, the NRI for non-events was 1099 – 766 / 25,326 = 1.31%
cOverall NRI of 0.0159 is the sum of the net percentages of patients that were correctly reclassified (into higher or lower risk depending on whether they subsequently did or did not die) by the model that incorporated function and Medicare data (base + function + Medicare model) compared to the base model